SAM-dPCR: Real-Time and High-throughput Absolute Quantification of Biological Samples Using Zero-Shot Segment Anything Model
Yuanyuan Wei, Shanhang Luo, Changran Xu, Yingqi Fu, Qingyue Dong, Yi, Zhang, Fuyang Qu, Guangyao Cheng, Yi-Ping Ho, Ho-Pui Ho, Wu Yuan

TL;DR
SAM-dPCR is a novel, rapid, and cost-effective method for absolute quantification of biological samples using the zero-shot SAM model, overcoming limitations of traditional detection techniques in nucleic acid diagnostics.
Contribution
This paper introduces SAM-dPCR, the first application of the SAM model in molecular diagnostics, enabling real-time, high-throughput, and annotation-free nucleic acid quantification.
Findings
Achieves over 97.7% accuracy in microreactor analysis
Processes samples in approximately 3.16 seconds
Validates strong linear relationship between known and inferred concentrations
Abstract
Digital PCR (dPCR) has revolutionized nucleic acid diagnostics by enabling absolute quantification of rare mutations and target sequences. However, current detection methodologies face challenges, as flow cytometers are costly and complex, while fluorescence imaging methods, relying on software or manual counting, are time-consuming and prone to errors. To address these limitations, we present SAM-dPCR, a novel self-supervised learning-based pipeline that enables real-time and high-throughput absolute quantification of biological samples. Leveraging the zero-shot SAM model, SAM-dPCR efficiently analyzes diverse microreactors with over 97.7% accuracy within a rapid processing time of 3.16 seconds. By utilizing commonly available lab fluorescence microscopes, SAM-dPCR facilitates the quantification of sample concentrations. The accuracy of SAM-dPCR is validated by the strong linear…
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Taxonomy
TopicsGene expression and cancer classification · Cell Image Analysis Techniques · Health, Environment, Cognitive Aging
MethodsSegment Anything Model
